Choice of Factors and their Levels Back propagation type, feed forward neural network was utilized in the study for predicting the cutting forces for different combination of training parameters.
What does FFNN stand for?
FFNN stands for Feed Forward Neural Network
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Samples in periodicals archive:
One type of neural network is the feed forward neural network in which the output of a neuron in one layer is tied to the input of a neuron in the next layer.
In the 1970's, it was shown that multi-layer feed forward neural network such as a multi-layer perceptron is able to classify non-linearly separable patterns.
It occurs in most of the methods including template matching and LVQ based Feed Forward Neural Network.
In the 1970's, it was shown that multi-layer feed forward neural network such as a multi-layer perceptron is able to classify non-linearly separable patterns.
In (Yiadid-Pecht et al, 1996) musical notes are recognized using a modified Neocognition model while the method described here uses feed forward neural networks.
A selected feed forward Neural Network is trained to model this controller using back propagation algorithm.
To reduce the computational effort by the conventional method, Back-Propagation Algorithm (BPA) based on Feed forward Neural Network has been utilized to compute the ATC.